Focusing on the problem that existing disease diagnosis methods using deep learning rely heavily on labeled data in the auxiliary diagnosis process, and lack the experience and knowledge of doctors or experts, a disease diagnosis method combining medical knowledge graph and deep learning is proposed. The core of this method is a knowledge driven convolutional neural network (CNN) model. By using the entity linking and disam-biguation and knowledge graph embedding technologies to get the structured disease knowledge of medical knowledge graph, the word vector of disease features in the disease description text and the entity vector of corresponding knowledge are taken as multi-channel input of CNN, so as to represent different types of disea...
Physicians establish diagnosis by assessing a patient’s signs, symptoms, age, sex, laboratory test f...
Although deep learning models like CNNs have achieved great success in medical image analysis, the s...
BACKGROUND:Constructing a medical image feature database according to the category of disease can ac...
The healthcare industry is very different from other industries. It is a high-priority industry and ...
Physicians establish diagnosis by assessing a patient's signs, symptoms, age, sex, laboratory test f...
Abstract(#br)As Noncommunicable Diseases (NCDs) are affected or controlled by diverse factors such a...
In recent years, with the popularization of Internet and technologies like big data analysis, the de...
Deep learning models are more often used in the medical field as a result of the rapid development o...
In this review the application of deep learning for medical diagnosis is addressed. A thorough analy...
Objective: Disease knowledge graphs are a way to connect, organize, and access disparate information...
In recent years, the means of disease diagnosis and treatment have been improved remarkably, along w...
In artificial intelligence, deep learning (DL) is a process that replicates the working mechanism of...
Medical data are an ever-growing source of information generated from the hospitals in the form of p...
Abstract Background Data integration to build a biomedical knowledge graph is a challenging task. Th...
Abstract Background Accurately recognizing rare disea...
Physicians establish diagnosis by assessing a patient’s signs, symptoms, age, sex, laboratory test f...
Although deep learning models like CNNs have achieved great success in medical image analysis, the s...
BACKGROUND:Constructing a medical image feature database according to the category of disease can ac...
The healthcare industry is very different from other industries. It is a high-priority industry and ...
Physicians establish diagnosis by assessing a patient's signs, symptoms, age, sex, laboratory test f...
Abstract(#br)As Noncommunicable Diseases (NCDs) are affected or controlled by diverse factors such a...
In recent years, with the popularization of Internet and technologies like big data analysis, the de...
Deep learning models are more often used in the medical field as a result of the rapid development o...
In this review the application of deep learning for medical diagnosis is addressed. A thorough analy...
Objective: Disease knowledge graphs are a way to connect, organize, and access disparate information...
In recent years, the means of disease diagnosis and treatment have been improved remarkably, along w...
In artificial intelligence, deep learning (DL) is a process that replicates the working mechanism of...
Medical data are an ever-growing source of information generated from the hospitals in the form of p...
Abstract Background Data integration to build a biomedical knowledge graph is a challenging task. Th...
Abstract Background Accurately recognizing rare disea...
Physicians establish diagnosis by assessing a patient’s signs, symptoms, age, sex, laboratory test f...
Although deep learning models like CNNs have achieved great success in medical image analysis, the s...
BACKGROUND:Constructing a medical image feature database according to the category of disease can ac...